2017
DOI: 10.1117/12.2250023
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A segmentation editing framework based on shape change statistics

Abstract: Segmentation is a key task in medical image analysis because its accuracy significantly affects successive steps. Automatic segmentation methods often produce inadequate segmentations, which require the user to manually edit the produced segmentation slice by slice. Because editing is time-consuming, an editing tool that enables the user to produce accurate segmentations by only drawing a sparse set of contours would be needed. This paper describes such a framework as applied to a single object. Constrained by… Show more

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Cited by 1 publication
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“…We believe that this editing should combine some but limited user specification on image slices, geometric information from acceptable segmentations in image slices, and image appearance information. Mostapha et al (2017) built a system based on srep statistics on shape changes needed, but it did not include a basis on appearance information. Also needed would be s-repbased shape changes of neighboring objects conditioned on the changes of the prime objects.…”
Section: Single Object Applicationsmentioning
confidence: 99%
“…We believe that this editing should combine some but limited user specification on image slices, geometric information from acceptable segmentations in image slices, and image appearance information. Mostapha et al (2017) built a system based on srep statistics on shape changes needed, but it did not include a basis on appearance information. Also needed would be s-repbased shape changes of neighboring objects conditioned on the changes of the prime objects.…”
Section: Single Object Applicationsmentioning
confidence: 99%